Estimation of Volcanic Earthquakes at Kirishima Volcano Using Machine
Learning
- Yohei Yukutake,
- Ahyi Kim,
- Takao Ohminato
Abstract
Volcanic earthquakes provide essential information for evaluating
volcanic activity. As volcanic earthquakes are often characterized by
swarm-like features, conventional methods using manual picking require
much time in constructing seismic catalogs. In this study, using a
machine learning framework and a trained model from a volcanic
earthquake catalog, we obtained a detailed picture of volcanic
earthquakes during the past 12 years at Kirishima volcano, southwestern
Japan. We could detect earthquakes about 7.5 times larger than those in
a conventional seismic catalog and obtain a high-resolution hypocenter
distribution through waveform correlation analysis. Hypocenter clusters
were estimated below the craters where magmatic or phreatic eruptions
occurred in recent years. Increases in seismic activities, b-values, and
low-frequency earthquakes were detected before the eruptions. The
process can be carried out in real time, and monitoring volcanic
earthquakes through machine learning contributes to understanding the
changes in volcanic activity and improving eruption predictions.29 Mar 2023Submitted to ESS Open Archive 04 Apr 2023Published in ESS Open Archive